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On Sun, 9 Jul 2006 02:26:44 +0100, "Reg Edwards"
wrote: Owen, I can't understand your problem. Could you condense it? I would just take every measurement to be correct at the time it was made and stop worrying about it. I am designing the instrument. I am exploring the number of samples required to reduce the effect of chance on the measurement result (in respect of the sampling issue) to an acceptable figure. Have some faith in your measuring instruments. Variation in the presense of noise can be expected. If you want to be more accurate, sit and watch the meter for 30 seconds and make a mental average. If the noise statistics are stable then you will obtain the same answer five minutes later. This will give you confidence in the measurements. Which is what you are looking for. "Statistics" is amongst the most useful of the many branches of mathematics. But it comes to an end when trying to estimate the confidence to be placed in setting confidence limits. If you have a few months to spare, refer to the works of Sir Ronald Arthur Fisher, the greatest of all Statisticians. He was involved with genetics, medicine, agriculture, weather, engineering, etc. Somehow, I guessed this would turn to alcohol! (You remind me of Gossett and the "t" distribution. Early in the 20th century Gossett was a chemist/mathematician working in the quality control department of the famous Guinness brewery in Dublin. In his work he derived the distribution of "t" which allowed confidence limits to be set up for the normal distribution based on the measurements on small samples themselves. He realised he had invented and mathematically proved a long-wanted, important, practical procedure. But his powerful employer could not allow chemistry and mathematics to be associated with yeast, hops and all the other natural flavoured ingredients in their beer so they barred him from publishing a learned paper on the subject under his own name. So he used the nom-de-plume "Student". Ever since then the name of his statistical distribution amongst scientists, engineers and everyone involved with statistics has been known as "Student's t". Guinness, untainted by Gossett, is still a popular drink in English and Irish pubs.) Well, despite my name and Irish father, there is not a skerrick of Irish in me, or Guiness for that matter. Student's "t" will very likely appear in the solution to your problem, whatever it is. Student's t distribution is a probability distribution of the mean of a sample of normally distributed random numbers. The mean of noise is 0 (unless it contains DC, which is not noise). The Chi-square distribution (which I proposed in the original post) is the probability distribution of the variance of a sample of normally distributed random numbers. The variance of noise voltage is the RMS^2, or proportional to power, and so is of interest. Owen -- |
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